Home »
Development »
TensorFlow JS – Build Machine Learning Projects using JS
TensorFlow JS – Build Machine Learning Projects using JS
TensorFlow JS – Build Machine Learning Projects using JS
Learn TensorFlow.js and build Machine Learning projects using the famous client-side Javascript library.
Created by The Click Reader | 1.5 hours on-demand video course
Learn how to build Machine Learning projects using Javascript in this TensorFlow JS Course created by The Click Reader. In this course, you will be learning about scalar as well as tensors and how to create them using TensorFlow.js. You will also be learning how to perform various kinds of tensor operations for manipulating and changing tensor values. You will be performing a total of four Machine Learning projects while learning through this TensorFlow JS full course
What you’ll learn
- Learn about Scalar and Tensors.
- Create Scalar and Tensors in TensorFlow JS.
- Perform various Tensor operations.
- Build a Linear Regression model from Scratch.
- Build a Linear Regression model using a Sequential Model.
- Build a Logistic Regression model using a Sequential Model.
- Build an image classifier using MobileNet.
Recommended Course
Machine Learning in JavaScript with TensorFlow.js
Tensorflow 2.0: Deep Learning and Artificial Intelligence
Udemy Promo Codes - January 2025
Gain access to over 11,000+ courses for just $16 [₹850] per month
New customer offer! Top courses at 80% off when you first visit Udemy
Affiliate Disclosure: Thank you for visiting Udemy Coupons ME. We want to let you know that some of the links on our website are affiliate links. By clicking on these links and making a purchase, we may receive a small commission. This is at no extra cost to you.
Our content, including the guidance we provide on education choices, is created with integrity and based on the practical assessment and feedback from our community of users. We focus on helping you find the best online courses to meet your needs, while the affiliate commissions we earn are reinvested into enhancing our platform.
We appreciate your support and trust in our recommendations!